JOURNAL ARTICLE
Determination of vehicle speed from recorded video using the open‐source software Kinovea.
Published In: Journal of Forensic Sciences, 2023, v. 68, n. 2. P. 667 1 of 3
Database: Academic Search Ultimate 2 of 3
Authored By: Paolino, Saverio; Zampa, Francesco 3 of 3
Abstract
Video devices of different kind often record traffic accidents, including vehicle‐pedestrian collisions and hit‐and‐run accidents. In these cases, the vehicle speed is valuable information because it can assist the investigators in an accident reconstruction. This paper examines the use of Kinovea, an open‐source video annotation tool designed for sport analysis, to estimate vehicle speed in forensic videos. Kinovea does not require a complex methodology, and it can be used to make the calculation easily. A series of vehicle driving experiments using an appropriately calibrated speed radar system (so called Scout Speed) were carried out, and measurements were compared with the estimated speed. In controlled conditions, the comparison of Scout reference speed and calculated average vehicle speed by means of Kinovea found an average difference of 0.43 km/h, with a margin of error of ±0.64 km/h. In addition, further preliminary tests were carried out to check the reliability of the measurements under lower resolution conditions. Also, in these cases the calculations were in line with the ground truth. Therefore, in the tested conditions, Kinovea demonstrated to be an easy and reliable tool available for forensic video examiners. Further tests need to be conducted in order to address the applicability of the measurement technique with true CCTV/surveillance video recordings. [ABSTRACT FROM AUTHOR]
Additional Information
- Source:Journal of Forensic Sciences. 2023/03, Vol. 68, Issue 2, p667
- Document Type:Article
- Subject Area:Consumer Health
- Publication Date:2023
- ISSN:0022-1198
- DOI:10.1111/1556-4029.15191
- Accession Number:162203363
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